tooluniverse-systems-biology
Systems Biology & Pathway Analysis
Comprehensive pathway and systems biology analysis integrating multiple curated databases to provide multi-dimensional view of biological systems, pathway enrichment, and protein-pathway relationships.
When to Use This Skill
Triggers:
- "Analyze pathways for this gene list"
- "What pathways is [protein] involved in?"
- "Find pathways related to [keyword/process]"
- "Perform pathway enrichment analysis"
- "Map proteins to biological pathways"
- "Find computational models for [process]"
- "Systems biology analysis of [genes/proteins]"
Use Cases:
- Gene Set Analysis: Identify enriched pathways from RNA-seq, proteomics, or screen results
- Protein Function: Discover pathways and processes a protein participates in
- Pathway Discovery: Find pathways related to diseases, processes, or phenotypes
- Systems Integration: Connect genes → pathways → processes → diseases
- Model Discovery: Find computational systems biology models (SBML)
- Cross-Database Validation: Compare pathway annotations across multiple sources
Core Databases Integrated
| Database | Coverage | Strengths |
|---|---|---|
| Reactome | Human-curated reactions & pathways | Detailed mechanistic pathways with reactions |
| KEGG | Reference pathways across organisms | Metabolic maps, disease pathways, drug targets |
| WikiPathways | Community-curated pathways | Emerging processes, collaborative updates |
| Pathway Commons | Integrated meta-database | Aggregates multiple sources (Reactome, KEGG, etc.) |
| BioModels | Computational SBML models | Mathematical/dynamic systems biology models |
| Enrichr | Statistical enrichment | Pathway over-representation analysis |
Workflow Overview
Input → Phase 1: Enrichment → Phase 2: Protein Mapping → Phase 3: Keyword Search → Phase 4: Top Pathways → Report
Phase 1: Pathway Enrichment Analysis
When: Gene list provided (from experiments, screens, differentially expressed genes)
Objective: Identify biological pathways statistically over-represented in gene list
Tools Used
enrichr_gene_enrichment_analysis:
- Input:
gene_list: Array of gene symbols (e.g., ["TP53", "BRCA1", "EGFR"])library: Pathway database (e.g., "KEGG_2021_Human", "Reactome_2022")
- Output: Array of enriched pathways with p-values, adjusted p-values, genes
- Use: Statistical over-representation analysis
Workflow
- Submit gene list to Enrichr
- Query KEGG pathway library for human
- Get enriched pathways sorted by significance
- Extract:
- Pathway names and IDs
- P-values (raw and adjusted)
- Genes from input list in each pathway
- Enrichment scores
Decision Logic
- Significance threshold: Adjusted p-value < 0.05 (default)
- Minimum genes: At least 2 genes from input list in pathway
- Report top pathways: Show 10-20 most significant
- Empty results: If no enrichment → note "no significant pathways" (don't fail)
Phase 2: Protein-Pathway Mapping
When: Protein UniProt ID provided
Objective: Map protein to all known pathways it participates in
Tools Used
Reactome_map_uniprot_to_pathways:
- Input:
id: UniProt accession (e.g., "P53350")
- Output: Array of Reactome pathways containing this protein
- Note: Parameter is
id(notuniprot_id)
Reactome_get_pathway_reactions:
- Input:
stId: Reactome pathway stable ID (e.g., "R-HSA-73817")
- Output: Array of reactions and subpathways
- Use: Get mechanistic details of pathways
Workflow
- Map UniProt ID to Reactome pathways
- Get all pathways this protein appears in
- For top pathway (or user-specified):
- Retrieve detailed reactions and subpathways
- Extract event names, types (Reaction vs Pathway)
- Note disease associations if present
Decision Logic
- Multiple pathways: Report all pathways, prioritize by hierarchical level
- Top pathway details: Get detailed reactions for 1-3 most relevant
- Versioned IDs: Reactome uses unversioned IDs - strip version if present
- Empty results: Check if protein ID valid; suggest alternative databases if Reactome empty
Phase 3: Keyword-Based Pathway Search
When: User provides keyword or biological process name
Objective: Search multiple pathway databases to find relevant pathways
Tools Used
KEGG Search
kegg_search_pathway:
- Input:
keyword(e.g., "diabetes", "apoptosis") - Output: Array of pathway IDs and descriptions
- Coverage: Reference pathways, metabolism, diseases
kegg_get_pathway_info:
- Input:
pathway_id(e.g., "hsa04930") - Output: Pathway details, genes, compounds
- Use: Get detailed information for specific pathway
WikiPathways Search
WikiPathways_search:
- Input:
query: Keyword or gene symbolorganism: Species filter (e.g., "Homo sapiens")
- Output: Array of pathway matches with IDs, names, URLs
- Coverage: Community-curated, includes emerging pathways
Pathway Commons Search
pc_search_pathways:
- Input:
action: "search_pathways"keyword: Search termdatasource: Optional filter (e.g., "reactome", "kegg")limit: Max results (default: 10)
- Output: Total hits and array of pathways with source attribution
- Coverage: Meta-database aggregating multiple sources
BioModels Search
biomodels_search:
- Input:
query: Keyword for computational modelslimit: Max results
- Output: Array of SBML models with IDs, names, publications
- Coverage: Mathematical/computational systems biology models
Workflow
- Search KEGG pathways by keyword
- Search WikiPathways with organism filter
- Search Pathway Commons (aggregates multiple sources)
- Search BioModels for computational models
- Compile results from all sources
- Note overlaps and source-specific pathways
Decision Logic
- Parallel queries: Search all databases simultaneously (independent)
- Empty from one source: Continue with other sources (common for specialized keywords)
- Result consolidation: Group by pathway concept, note which databases contain each
- Model availability: BioModels may be empty for many processes - this is normal
Phase 4: Top-Level Pathway Catalog
When: Always included to provide context
Objective: Show major biological systems/pathways for organism
Tools Used
Reactome_list_top_pathways:
- Input:
species(e.g., "Homo sapiens") - Output: Array of top-level pathway categories
- Use: Provides hierarchical pathway organization
Workflow
- Retrieve top-level pathways for specified organism
- Display pathway categories (metabolism, signaling, disease, etc.)
- Serve as reference for pathway hierarchy
Decision Logic
- Always show: Provides context even if other phases empty
- Organism-specific: Filter by species of interest
- Hierarchical view: These are parent pathways with many subpathways
Output Structure
Report Format
Progressive Markdown Report:
- Create report file first
- Add sections progressively
- Each section self-contained (handles empty gracefully)
Required Sections:
- Header: Analysis parameters (genes, protein, keyword, organism)
- Phase 1 Results: Pathway enrichment (if gene list)
- Phase 2 Results: Protein-pathway mapping (if protein ID)
- Phase 3 Results: Keyword search across databases (if keyword)
- Phase 4 Results: Top-level pathway catalog (always)
Per-Database Subsections:
- Database name and result count
- Table of pathways with key metadata
- Note if database returns no results
- Links or IDs for follow-up
Data Tables
Enrichment Results: | Pathway | P-value | Adjusted P-value | Genes | | ... | ... | ... | ... |
Protein Pathways: | Pathway Name | Pathway ID | Species | | ... | ... | ... |
Keyword Search: | Pathway/Model ID | Name | Source/Database | | ... | ... | ... |
Tool Parameter Reference
Critical Parameter Notes (from testing):
| Tool | Parameter | CORRECT Name | Common Mistake |
|---|---|---|---|
| Reactome_map_uniprot_to_pathways | id |
✅ id |
❌ uniprot_id |
| kegg_search_pathway | keyword |
✅ keyword |
- |
| WikiPathways_search | query |
✅ query |
- |
| pc_search_pathways | action + keyword |
✅ Both required | ❌ action optional |
| enrichr_gene_enrichment_analysis | gene_list |
✅ gene_list |
- |
Response Format Notes:
- Reactome: Returns list directly (not wrapped in
{status, data}) - Pathway Commons: Returns dict directly with
total_hitsandpathways - Others: Standard
{status: "success", data: [...]}format
Fallback Strategies
Enrichment Analysis
- Primary: Enrichr with KEGG library
- Fallback: Try alternative libraries (Reactome, GO Biological Process)
- If all fail: Note "enrichment analysis unavailable" and continue
Protein Mapping
- Primary: Reactome protein-pathway mapping
- Fallback: Use keyword search with protein name
- If empty: Check if protein ID valid; suggest checking gene symbol
Keyword Search
- Primary: Search all databases (KEGG, WikiPathways, Pathway Commons, BioModels)
- Fallback: If all empty, broaden keyword (e.g., "diabetes" → "glucose")
- If still empty: Note "no pathways found for [keyword]"
Common Use Patterns
Pattern 1: Differential Expression Analysis
Input: Gene list from RNA-seq (upregulated genes)
Workflow: Phase 1 (Enrichment) → Phase 4 (Context)
Output: Enriched pathways explaining expression changes
Pattern 2: Protein Function Investigation
Input: UniProt ID of protein of interest
Workflow: Phase 2 (Protein mapping) → Phase 3 (Keyword with protein name)
Output: All pathways involving protein + related pathways
Pattern 3: Disease Pathway Exploration
Input: Disease name or process keyword
Workflow: Phase 3 (Keyword search) → Phase 4 (Context)
Output: Pathways from multiple databases related to disease
Pattern 4: Comprehensive Multi-Input
Input: Gene list + protein ID + keyword
Workflow: All phases
Output: Complete systems view with enrichment, specific mappings, and context
Quality Checks
Data Completeness
- At least one analysis phase completed successfully
- Each database result includes source attribution
- Empty results explicitly noted (not silently omitted)
- P-values reported with appropriate precision
- Pathway IDs provided for follow-up analysis
Biological Validity
- Enrichment p-values show significance threshold
- Protein mappings consistent with known function
- Keyword results relevant to query
- Cross-database results show expected overlaps
Report Quality
- All sections present even if "no data"
- Tables formatted consistently
- Source databases clearly attributed
- Follow-up recommendations if data sparse
Limitations & Known Issues
Database-Specific
- Reactome: Strong human coverage; limited for non-model organisms
- KEGG: Requires keyword match; may miss synonyms
- WikiPathways: Variable curation quality; check pathway version dates
- Pathway Commons: Aggregation can have duplicates; check source
- BioModels: Sparse for many processes; often returns no results
- Enrichr: Requires gene symbols (not IDs); case-sensitive
Technical
- Response formats: Different databases use different response structures (handled in implementation)
- Rate limits: Some databases have rate limits for heavy usage
- Version differences: Pathway databases updated at different rates
Analysis
- Enrichment bias: Pathway enrichment depends on pathway size and annotation completeness
- Organism specificity: Not all databases cover all organisms equally
- Pathway definitions: Same biological process may be modeled differently across databases
Summary
Systems Biology & Pathway Analysis Skill provides comprehensive pathway analysis by integrating:
- ✅ Statistical pathway enrichment (Enrichr)
- ✅ Protein-pathway mapping (Reactome)
- ✅ Multi-database keyword search (KEGG, WikiPathways, Pathway Commons, BioModels)
- ✅ Hierarchical pathway context (Reactome top-level)
Outputs: Markdown report with pathway tables, enrichment statistics, and cross-database comparisons
Best for: Gene set analysis, protein function investigation, pathway discovery, systems-level biology
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